GA-SmaAt-GNet: Generative adversarial small attention GNet for extreme precipitation nowcasting

Eloy Reulen, Jie Shi, Siamak Mehrkanoon*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

In recent years, data-driven modeling approaches have gained significant attention across various meteorological applications, particularly in weather forecasting. However, these methods often face challenges in handling extreme weather conditions. In response, we present the GA-SmaAt-GNet model, a novel generative adversarial framework for extreme precipitation nowcasting. This model features a unique SmaAt-GNet generator, an extension of the successful SmaAt-UNet architecture, capable of integrating precipitation masks (binarized precipitation maps) to enhance predictive accuracy. Additionally, GA-SmaAt-GNet incorporates an attention-augmented discriminator inspired by the Pix2Pix architecture. This innovative framework paves the way for generative precipitation nowcasting using multiple data sources. We evaluate the performance of SmaAt-GNet and GA-SmaAt-GNet using real-life precipitation data from The Netherlands, revealing notable improvements in overall performance and for extreme precipitation events compared to other models. Specifically, our proposed architecture demonstrates its main performance gain in summer and autumn, when precipitation intensity is typically at its peak. Furthermore, we conduct uncertainty analysis on the GA-SmaAt-GNet model and the precipitation dataset, providing insights into its predictive capabilities. Finally, we employ Grad-CAM to offer visual explanations of our model's predictions, generating activation heatmaps that highlight areas of input activation throughout the network.

Original languageEnglish
Article number112612
Number of pages13
JournalKnowledge-Based Systems
Volume305
DOIs
Publication statusPublished - 3 Dec 2024

Bibliographical note

Publisher Copyright:
© 2024 The Authors

Keywords

  • Attention
  • Deep learning
  • Extreme precipitation nowcasting
  • GAN
  • UNet

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